---
title: Call Tools in Multiple Steps
description: Learn how to call tools in multiple steps using the AI SDK and Next.js
tags: ['next', 'streaming', 'tool use']
---

# Call Tools in Multiple Steps

Some language models are great at calling tools in multiple steps to achieve a more complex task. This is particularly useful when the tools are dependent on each other and need to be executed in sequence during the same generation step.

## Client

Let's create a React component that imports the `useChat` hook from the `@ai-sdk/react` module. The `useChat` hook will call the `/api/chat` endpoint when the user sends a message. The endpoint will generate the assistant's response based on the conversation history and stream it to the client. If the assistant responds with a tool call, the hook will automatically display them as well.

```tsx filename='app/page.tsx'
'use client';

import { useChat } from '@ai-sdk/react';
import { DefaultChatTransport } from 'ai';
import { useState } from 'react';
import type { ChatMessage } from './api/chat/route';

export default function Page() {
  const [input, setInput] = useState('');

  const { messages, sendMessage } = useChat<ChatMessage>({
    transport: new DefaultChatTransport({
      api: '/api/chat',
    }),
  });

  return (
    <div>
      <input
        className="border"
        value={input}
        onChange={event => {
          setInput(event.target.value);
        }}
        onKeyDown={async event => {
          if (event.key === 'Enter') {
            sendMessage({
              text: input,
            });
            setInput('');
          }
        }}
      />

      {messages.map((message, index) => (
        <div key={index}>
          {message.parts.map((part, i) => {
            switch (part.type) {
              case 'text':
                return <div key={`${message.id}-text`}>{part.text}</div>;
              case 'tool-getLocation':
              case 'tool-getWeather':
                return (
                  <div key={`${message.id}-weather-${i}`}>
                    {JSON.stringify(part, null, 2)}
                  </div>
                );
            }
          })}
        </div>
      ))}
    </div>
  );
}
```

## Server

You will create a new route at `/api/chat` that will use the `streamText` function from the `ai` module to generate the assistant's response based on the conversation history.

You will use the [`tools`](/docs/reference/ai-sdk-core/generate-text#tools) parameter to specify two tools called `getLocation` and `getWeather` that will first get the user's location and then use it to get the weather.

You will add the two functions mentioned earlier and use zod to specify the schema for its parameters.

To call tools in multiple steps, you can use the `stopWhen` option to specify the stopping conditions for when the model generates a tool call. In this example, you will set it to `stepCountIs(5)` to allow for multiple consecutive tool calls (steps).

```ts filename='app/api/chat/route.ts'
import {
  type InferUITools,
  type ToolSet,
  type UIDataTypes,
  type UIMessage,
  convertToModelMessages,
  stepCountIs,
  streamText,
  tool,
} from 'ai';
import { z } from 'zod';

const tools = {
  getLocation: tool({
    description: 'Get the location of the user',
    inputSchema: z.object({}),
    execute: async () => {
      const location = { lat: 37.7749, lon: -122.4194 };
      return `Your location is at latitude ${location.lat} and longitude ${location.lon}`;
    },
  }),
  getWeather: tool({
    description: 'Get the weather for a location',
    inputSchema: z.object({
      city: z.string().describe('The city to get the weather for'),
      unit: z
        .enum(['C', 'F'])
        .describe('The unit to display the temperature in'),
    }),
    execute: async ({ city, unit }) => {
      const weather = {
        value: 24,
        description: 'Sunny',
      };

      return `It is currently ${weather.value}°${unit} and ${weather.description} in ${city}!`;
    },
  }),
} satisfies ToolSet;

export type ChatTools = InferUITools<typeof tools>;

export type ChatMessage = UIMessage<never, UIDataTypes, ChatTools>;

export async function POST(req: Request) {
  const { messages }: { messages: ChatMessage[] } = await req.json();

  const result = streamText({
    model: 'openai/gpt-4o',
    system: 'You are a helpful assistant.',
    messages: convertToModelMessages(messages),
    stopWhen: stepCountIs(5),
    tools,
  });

  return result.toUIMessageStreamResponse();
}
```
